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Multi-View Gene Clustering using Gene Ontology and Expression-based Similarities

机译:使用基因本体和基于表达的相似性进行多视图基因聚类

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Gene is a fundamental, physical and functional unit of hereditary. A proper grouping of genes is needed for a better understanding of the natural patterns amongst them. Most of the existing approaches utilize gene expression values for the clustering of genes. They mostly ignore the semantic similarity between genes obtained from the global database like Gene Ontology(GO). We present a multi-view multi-objective clustering approach where Euclidean distances between the gene expression values and GO-based multi-factored gene-gene semantic similarity are considered as two complementary views and a consensus partitioning is obtained that satisfies both the aspects or views. Two real-life gene expression datasets are used to demonstrate the effectiveness of the proposed multi-view clustering technique. We have compared our approach with various standard single-view, multi-view and multi-objective optimization based clustering approaches. The results show that better co-expressed and biologically significant gene partitions are obtained by our proposed approach. Also, to validate the significance of the obtained clusters statistically and biologically, various biological, statistical and visual significance tests were conducted, and the corresponding results are reported.
机译:基因是遗传性的基本,身体和功能性单位。需要适当分组基因,以更好地了解它们之间的自然模式。大多数现有方法利用基因聚类的基因表达值。它们主要忽略了从全球数据库等基因本体(GO)获得的基因之间的语义相似性。我们介绍了一种多视图多目标聚类方法,基因表达值与基于Go的多因素基因 - 基因语义相似性的欧几里德距离被认为是两个互补视图,并且获得了满足方面或视图的共识分区。两个现实生命基因表达数据集用于展示所提出的多视图聚类技术的有效性。我们将我们的方法与各种标准单视图,多视图和基于多目标优化的聚类方法进行了比较。结果表明,通过我们提出的方法获得了更好的共同表达和生物学显着的基因分区。此外,为了统计和生物学上获得所得簇的重要性,进行各种生物,统计和视觉意义测试,并报告了相应的结果。

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